Record Details

Multiobjective Stochastic Programing: The Case of Production of Cakes

2018 International Conference on Pure and Applied Science

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Field Value
 
Title Multiobjective Stochastic Programing: The Case of Production of Cakes
 
Creator Abdulqader O. Hamadameen; Department of Mathematics, Faculty of Science and Health, Koya University, Kurdistan Region
 
Subject Mathematics
Compromise solution; Fuzzy and stochastic transformation approach; Fuzzy transformation; p-Level efficient point; Stochastic transformations
 
Description A study on Multiobjective Stochastic Linear Programming Problems with Partial Information on probability distribution (MSLPI) is conducted. A method is proposed to utilize the concept of two stage transformations; fuzzy transformations in the fuzzy assertion in the probability distribution and stochastic transformation in the random constraints and the random objective function of the MSLPI. The two stage transformations convert MSLPI problem into its unique Linear Programming (LP) problem. An algorithm is proposed along with a numerical example which illustrated the practicability of the proposed algorithm. Results with existing methods shows the efficiency of the proposed method. Published 01 August 2018DOI: 10.14500/icpas2018.ama17http://dx.doi.org/10.14500/icpas2018.ama17
 
Publisher Pure and Applied Science
 
Contributor Koya University
 
Date 2018-02-15 16:05:50
 
Type Peer-reviewed Paper
 
Format application/pdf
 
Identifier http://conferences.koyauniversity.org/index.php/pas/2018/paper/view/17
 
Source Pure and Applied Science; 2018 International Conference on Pure and Applied Science
 
Language en
 
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